A microwell platform for high-throughput longitudinal phenotyping and selective retrieval of organoids.

Alexandra Sockell, Wing Wong, Scott Longwell, Thy Vu, Kasper Karlsson, Daniel Mokhtari, Julia Schaepe, Yuan-Hung Lo, Vincent Cornelius, Calvin Kuo, David Van Valen, Christina Curtis, Polly M Fordyce
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Abstract

Organoids are powerful experimental models for studying the ontogeny and progression of various diseases including cancer. Organoids are conventionally cultured in bulk using an extracellular matrix mimic. However, bulk-cultured organoids physically overlap, making it impossible to track the growth of individual organoids over time in high throughput. Moreover, local spatial variations in bulk matrix properties make it difficult to assess whether observed phenotypic heterogeneity between organoids results from intrinsic cell differences or differences in the microenvironment. Here, we developed a microwell-based method that enables high-throughput quantification of image-based parameters for organoids grown from single cells, which can further be retrieved from their microwells for molecular profiling. Coupled with a deep learning image-processing pipeline, we characterized phenotypic traits including growth rates, cellular movement, and apical-basal polarity in two CRISPR-engineered human gastric organoid models, identifying genomic changes associated with increased growth rate and changes in accessibility and expression correlated with apical-basal polarity. A record of this paper's transparent peer review process is included in the supplemental information.

用于类器官的高通量纵向表型和选择性检索的微孔平台。
类器官是研究包括癌症在内的各种疾病个体发生和进展的强大实验模型。类器官通常使用细胞外基质模拟物进行大量培养。然而,大量培养的类器官在物理上重叠,使得不可能以高通量跟踪单个类器官随时间的生长。此外,大块基质性质的局部空间变化使得很难评估观察到的类器官之间的表型异质性是由内在细胞差异还是微环境差异引起的。在这里,我们开发了一种基于微孔的方法,该方法能够高通量量化从单细胞生长的类器官的基于图像的参数,这些参数可以进一步从它们的微孔中检索,用于分子分析。结合深度学习图像处理管道,我们在两个CRISPR工程化的人类胃类器官模型中表征了表型特征,包括生长速率、细胞运动和顶端基底极性,确定了与生长速率增加相关的基因组变化,以及与顶端基本极性相关的可及性和表达的变化。本文的透明同行评审过程记录包含在补充信息中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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